A New Geographical Cluster View on Passenger Vehicle Purchasing in Chinese Cities
Abstract
:1. Introduction
2. Background Literature
3. Methodology
3.1. Data and Research Area
3.2. Revealed Comparative Advantage (RCA) and Proximity
3.3. City Cluster Based on Proximity
3.4. Discriminant Analysis
4. Results
4.1. The Statistics of Proximity
4.2. Proximity and Distance
4.3. City Clusters Based on Higher Proximity Links
- (1)
- The Southeast developed city-cluster. As Figure 6 shows, there are 27 cities in this cluster, most of which are located in the provinces in the southeast coastal area of China, such as Shanghai, Jiangsu, Zhejiang, Fujian, and Guangdong. Meanwhile, several economically developed inland cities are also included in this group, such as Beijing and Chengdu. Virtually all of them are prominent and populous cities with highly developed economies, not only in relation to their own provinces but also to the whole country of China. All of the cities are playing a leading role in shaping China’s current and future economic landscape and city space.
- (2)
- The North China city-cluster. A total of 37 cities are included in this group. In addition to higher market proximities among them, cities in this cluster demonstrate more geographical closeness and an apparent spatial agglomeration in the North China Plain and surroundings, such as Hebei, Henan, Shanxi, and Shandong (Figure 7). Some common features of these cities are that their economy and population levels are much smaller than those in the Southeast coast city-cluster, and most of them are in the second-tier and third-tier cities of their respective provinces.
- (3)
- The Northeast city-cluster. Only 11 cities are included in this group, making its number the smallest among all the four clusters (Figure 8). These cities are mostly located in the middle and western parts of Northeast China, with relatively weak economies compared to cities in Southeast city-cluster and North China city-clusters. In fact, most of the more developed cities in Northeast China are excluded from the cluster.
- (4)
- The West China city-cluster. This cluster has the largest number of cities (47) and covers a broader geographical territory (Figure 9). It includes many major cities in west and southwest China and they are generally considered underdeveloped with the lowest development levels. The proximity values among these cities are commonly higher, especially in the provinces of Ningxia, Gansu, Qinghai, and Xinjiang. These cities share quite similar automobile market structures. Overall, cities in this group have a smaller urban economy and population.
4.4. Heterogeneity among City-Clusters
5. Discussion
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Variables | All the Prefecture Cities | Southeast City-Cluster | North China City-Cluster | Northeast City-Cluster | West China City-Cluster | |||||
---|---|---|---|---|---|---|---|---|---|---|
Mean | CV | Mean | CV | Mean | CV | Mean | CV | Mean | CV | |
Total car sales | 38,798 | 147.95% | 145,039 | 77.58% | 47,424 | 62.39% | 19,019 | 36.50% | 11,465 | 75.54% |
GDP (billion yuan) | 157.5 | 140.35% | 571.24 | 80.51% | 153.51 | 46.09% | 84.69 | 41.21% | 46.77 | 103.94% |
Per capita GDP (yuan) | 36,902 | 68.59% | 73,189 | 31.90% | 29,019 | 30.66% | 31,017 | 34.84% | 25,835 | 82.16% |
Population(million) | 3.96 | 81.91% | 7.746 | 65.67% | 5.483 | 42.06% | 2.830 | 38.31% | 2.062 | 67.90% |
Employed population (million) | 2.32 | 81.84% | 4.68 | 56.31% | 3.32 | 46.08% | 1.46 | 39.69% | 1.14 | 77.71% |
Per capita disposable income of urban residents (yuan) | 19,011 | 27.22% | 30,310 | 16.10% | 18,826 | 12.53% | 16,799 | 13.75% | 15,650 | 18.86% |
Proportion of car sales of foreign automakers (%) | 5.76 | 50.89% | 11.79 | 16.68% | 2.79 | 29.29% | 4.17 | 20.42% | 4.16 | 36.23% |
Proportion of car sales of Sino-foreign joint ventures (%) | 64.40 | 14.22% | 72.82 | 3.69% | 63.62 | 6.84% | 60.16 | 8.32% | 54.15 | 17.06% |
Proportion of car sales of domestic automakers (%) | 29.84 | 33.40% | 15.39 | 16.35% | 33.59 | 13.93% | 35.67 | 15.60% | 41.69 | 22.90% |
Top 10 Manufacturers with Dominance in each cluster | 1. BMW *; 2. Mercedes-Benz *; 3. BMW Brilliance; 4. Beijing-Benz; 5. Volkswagen *; 6. Audi *; 7. Lexus *; 8. Mini *; 9. Infiniti *; 10. Porsche * | 1. Changan #; 2. Changhe-Suzuki; 3. Chery #; 4. SGMW; 5. Geely #; 6. Beijing-Hyundai; 7. Great Wall #; 8. FAW-Haima; 9. BYD #; 10. DYK | 1. FAW-Volkswagen; 2. Chery #; 3. Tianjin-FAW; 4. Brilliance #; 5. Great Wall #; 6. BYD #; 7. Changan-Suzuki; 8. Toyota; 9. Beijing-Hyundai; 10. Geely # | 1. Geely #; 2. Hawtai #; 3. Great Wall #; 4. GAC-Changfeng #; 5. Lifan #; 6. Beijing-Hyundai; 7. Chery #; 8. Toyota; 9. Hyundai; 10. Mitsubishi |
Variables | Function 1 | Function 2 | Function 3 |
---|---|---|---|
Per capita disposable income of urban residents | −0.374 | −0.030 | 0.054 |
Employed population | 0.060 | −0.444 | −0.048 |
Per capita GDP | 0.217 | −0.086 | −0.069 |
Proportion of car sales of foreign automakers | −0.834 | 0.049 | −0.088 |
West | 0.493 | 0.798 | −0.289 |
Northeast | 0.164 | 0.426 | 0.871 |
Middle | 0.338 | −0.073 | −0.184 |
Group | Function 1 | Function 2 | Function 3 |
---|---|---|---|
Southeast | −5.248 | 0.226 | −0.201 |
North China | 1.200 | −2.317 | −0.117 |
Northeast | 0.933 | 0.963 | 4.143 |
West China | 1.836 | 1.469 | −0.762 |
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Liu, D.; Song, W.; Lu, J.; Xie, C.; Wen, X. A New Geographical Cluster View on Passenger Vehicle Purchasing in Chinese Cities. ISPRS Int. J. Geo-Inf. 2018, 7, 9. https://doi.org/10.3390/ijgi7010009
Liu D, Song W, Lu J, Xie C, Wen X. A New Geographical Cluster View on Passenger Vehicle Purchasing in Chinese Cities. ISPRS International Journal of Geo-Information. 2018; 7(1):9. https://doi.org/10.3390/ijgi7010009
Chicago/Turabian StyleLiu, Daqian, Wei Song, Jia Lu, Chunyan Xie, and Xin Wen. 2018. "A New Geographical Cluster View on Passenger Vehicle Purchasing in Chinese Cities" ISPRS International Journal of Geo-Information 7, no. 1: 9. https://doi.org/10.3390/ijgi7010009